概率表示作为高级视觉的构建块

Andrey Chetverikov, Arni Kristjansson
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引用次数: 0

摘要

目前的感知理论认为,大脑以概率分布的形式来表征世界的特征,但这种不确定的基础能否成为日常视觉的基础呢?感知物体和场景不仅需要知道特征(如颜色)是如何分布的,还需要知道它们在哪里,以及它们与哪些其他特征相结合。使用贝叶斯计算模型,我们恢复了人类观察者在干扰物中搜索奇数刺激时使用的概率表示。重要的是,我们发现大脑在特征维度和空间位置之间整合信息,与信息整合不可能相比,导致更精确的表征。我们还发现了表征不对称和偏见,展示了它们的空间组织,并解释了这种结构如何与视觉表征的“汇总统计”账户相矛盾。我们的研究结果证实,概率编码的视觉特征与其他特征和特定位置绑定在一起,为概率表示如何成为高级视觉的基础提供了有力的证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Probabilistic representations as building blocks for higher-level vision
Current theories of perception suggest that the brain represents features of the world as probability distributions, but can such uncertain foundations provide the basis for everyday vision? Perceiving objects and scenes requires knowing not just how features (e.g., colors) are distributed but also where they are and which other features they are combined with. Using a Bayesian computational model, we recovered probabilistic representations used by human observers to search for odd stimuli among distractors. Importantly, we found that the brain integrates information between feature dimensions and spatial locations, leading to more precise representations compared to when information integration is not possible. We also uncovered representational asymmetries and biases, showing their spatial organization and explain how this structure argues against “summary statistics” accounts of visual representations. Our results confirm that probabilistically encoded visual features are bound with other features and to particular locations, providing a powerful demonstration of how probabilistic representations can be a foundation for higher-level vision.
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